首页> 外文期刊>Numerical: Jurnal Matematika dan Pendidikan Matematika >Optimasi Learning Rate Neural Network Backpropagation Dengan Search Direction Conjugate Gradient Pada Electrocardiogram
【24h】

Optimasi Learning Rate Neural Network Backpropagation Dengan Search Direction Conjugate Gradient Pada Electrocardiogram

机译:Optimasi学习速率神经网络反向化邓安搜索方向共轭梯度PADA心电图

获取原文
       

摘要

This paper develops a Neural network (NN) using conjugate gradient (CG). The modification of this method is in defining the direction of linear search. The conjugate gradient method has several methods to determine the steep size such as the Fletcher-Reeves, Dixon, Polak-Ribere, Hestene Steifel, and Dai-Yuan methods by using discrete electrocardiogram data. Conjugate gradients are used to update learning rates on neural networks by using different steep sizes. While the gradient search direction is used to update the weight on the NN. The results show that using Polak-Ribere get an optimal error, but the direction of the weighting search on NN widens and causes epoch on NN training is getting longer. But Hestene Steifel, and Dai-Yua could not find the gradient search direction so they could not update the weights and cause errors and epochs to infinity.
机译:本文使用共轭梯度(CG)开发神经网络(NN)。该方法的修改是定义线性搜索的方向。共轭梯度方法具有几种方法,以通过使用离散心电图数据确定陡峭的陡峭尺寸,例如绒毛 - REEVES,DIXON,POLAK-RIBERE,HESTENE STEIFER和DAI-YUAN方法。共轭梯度用于通过使用不同的陡峭尺寸来更新神经网络的学习速率。虽然梯度搜索方向用于更新NN上的权重。结果表明,使用Polak-Ribere获得最佳误差,但NN上加权搜索的方向变宽并导致NN训练上的时期越来越长。但是hestene Steifel,而Dai-Yua找不到渐变搜索方向,这样他们就无法更新权重并导致错误和时期到无穷大。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号